I have a question about calculating an AUC for every individual in a dataset, after imputation using MICE.

I know how I can do it in a complete cases dataset. I have done it as follows:

```
id <- c(1,2,3,4,5,6,7,8,9,10)
measure_1 <- c(60,80,90,55,60,61,77,67,88,90)
measure_2 <- c(55,88,88,55,70,61,80,66,65,92)
measure_3 <- c(62,88,85,56,68,62,89,62,70,99)
measure_4 <- c(62,90,83,54,65,62,91,59,67,96)
dat <- data.frame(id, measure_1, measure_2, measure_3, measure_4)
dat
x <- c(0,7,14,21) # number of days
library(Bolstad2)
f <- function(a){
Patient <- dat[a,]
vector_patient <- c(Patient[2:5])
AUCpatient <- sintegral(x,vector_patient)$int
return(AUCpatient)
}
vector <- c(1:10)
listAUC <- lapply(vector, f)
vector_AUC <- unlist(listAUC, use.names=FALSE)
vector_AUC
```

This gave me a vector with all the AUCs for all patients. This vector can be added to my dataset if I want to.

But now I have a problem: I have missings in my dataset. My dataset can be obtained using the following code:

```
id <- c(1,2,3,4,5,6,7,8,9,10)
measure1 <- c(60,NA,90,55,60,61,77,67,88,90)
measure2 <- c(55,NA,NA,55,70,NA,80,66,65,92)
measure3 <- c(62,88,85,NA,68,62,89,62,70,99)
measure4 <- c(62,90,83,54,NA,62,NA,59,67,96)
datmis <- data.frame(id, measure1, measure2, measure3, measure4)
datmis
```

I want to impute this dataset using MICE.

```
library(mice)
imp <- mice(datmis, maxit = 0)
meth <- imp$method
pred <- imp$predictorMatrix
imp <- mice(datmis, method = meth, predictorMatrix = pred, seed = 2018, maxit = 10, m = 5)
```

So now I have everything imputed. I want to create the AUCs for every individual, in every imputed dataset. Then I want to pool the results, resulting in one single AUC for every individual. However, using the formula create in the previous example does not work anymore. Is there someone who can help me out?